Integrating Machine Learning in the Coarse-Grained Molecular Simulation of Polymers

Eleonora Ricci, Niki Vergadou

Research output: Contribution to journalReview articlepeer-review

Abstract / Description of output

Machine learning (ML) is having an increasing impact on the physical sciences, engineering, and technology and its integration into molecular simulation frameworks holds great potential to expand their scope of applicability to complex materials and facilitate fundamental knowledge and reliable property predictions, contributing to the development of efficient materials design routes. The application of ML in materials informatics in general, and polymer informatics in particular, has led to interesting results, however great untapped potential lies in the integration of ML techniques into the multiscale molecular simulation methods for the study of macromolecular systems, specifically in the context of Coarse Grained (CG) simulations. In this Perspective, we aim at presenting the pioneering recent research efforts in this direction and discussing how these new ML-based techniques can contribute to critical aspects of the development of multiscale molecular simulation methods for bulk complex chemical systems, especially polymers. Prerequisites for the implementation of such ML-integrated methods and open challenges that need to be met toward the development of general systematic ML-based coarse graining schemes for polymers are discussed.
Original languageUndefined/Unknown
Pages (from-to)2302–2322
JournalJournal of Physical Chemistry B (Soft Condensed Matter and Biophysical Chemistry)
Volume127
Issue number11
Early online date8 Mar 2023
DOIs
Publication statusPublished - 23 Mar 2023

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